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Distributed cross-media multiple binary subspace learning

机译:分布式跨媒体多个二进制子空间学习

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摘要

Due to the ubiquitous existence of large-scale data in today's real-world applications, including learning on cross-media data, we propose a semi-supervised learning method, named Multiple Binary Subspace Regression, for cross-media data concept detection. In order to mine the common features among the data with multiple modalities, we project the original cross-media data onto the same subspace-level representation simultaneously by mapping to the corresponding subspaces for dimensionality reduction. All the subspaces are set to be binary, which only involve the addition operations and omit the multiplication operations in the subsequent computation owing to the good property of the binary values. The dimensionality reduction to a binary subspace and the concept detection on this subspace are also optimized simultaneously leading to a semi-supervised model. For dealing with large-scale data, our learning method is easily implemented to run in a MapReduce-based Hadoop system. Empirical studies demonstrate its competitive performance on convergence, efficiency, and scalability in comparison with the state-of-the-art literature.
机译:由于当今在现实世界中应用(包括跨媒体数据的学习)中普遍存在大规模数据,因此,我们提出了一种用于跨媒体数据概念检测的半监督学习方法,称为多重二进制子空间回归。为了挖掘具有多种模态的数据之间的共同特征,我们通过映射到相应的子空间以进行降维,将原始的跨媒体数据同时投影到相同的子空间级表示上。所有子空间都设置为二进制,由于二进制值的良好属性,它们仅涉及加法运算,并且在后续计算中省略了乘法运算。同时优化了对二进制子空间的降维和对该子空间的概念检测,从而得到了半监督模型。为了处理大规模数据,我们的学习方法很容易实现以在基于MapReduce的Hadoop系统中运行。实证研究表明,与最新文献相比,它在融合性,效率和可扩展性方面具有竞争优势。

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